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Missing Data in Randomized Clinical Trials for Weight Loss: Scope of the Problem, State of the Field, and Performance of Statistical Methods

BACKGROUND: Dropouts and missing data are nearly-ubiquitous in obesity randomized controlled trails, threatening validity and generalizability of conclusions. Herein, we meta-analytically evaluate the extent of missing data, the frequency with which various analytic methods are employed to accommoda...

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Autores principales: Elobeid, Mai A., Padilla, Miguel A., McVie, Theresa, Thomas, Olivia, Brock, David W., Musser, Bret, Lu, Kaifeng, Coffey, Christopher S., Desmond, Renee A., St-Onge, Marie-Pierre, Gadde, Kishore M., Heymsfield, Steven B., Allison, David B.
Formato: Texto
Lenguaje:English
Publicado: Public Library of Science 2009
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC2720539/
https://www.ncbi.nlm.nih.gov/pubmed/19675667
http://dx.doi.org/10.1371/journal.pone.0006624
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author Elobeid, Mai A.
Padilla, Miguel A.
McVie, Theresa
Thomas, Olivia
Brock, David W.
Musser, Bret
Lu, Kaifeng
Coffey, Christopher S.
Desmond, Renee A.
St-Onge, Marie-Pierre
Gadde, Kishore M.
Heymsfield, Steven B.
Allison, David B.
author_facet Elobeid, Mai A.
Padilla, Miguel A.
McVie, Theresa
Thomas, Olivia
Brock, David W.
Musser, Bret
Lu, Kaifeng
Coffey, Christopher S.
Desmond, Renee A.
St-Onge, Marie-Pierre
Gadde, Kishore M.
Heymsfield, Steven B.
Allison, David B.
author_sort Elobeid, Mai A.
collection PubMed
description BACKGROUND: Dropouts and missing data are nearly-ubiquitous in obesity randomized controlled trails, threatening validity and generalizability of conclusions. Herein, we meta-analytically evaluate the extent of missing data, the frequency with which various analytic methods are employed to accommodate dropouts, and the performance of multiple statistical methods. METHODOLOGY/PRINCIPAL FINDINGS: We searched PubMed and Cochrane databases (2000–2006) for articles published in English and manually searched bibliographic references. Articles of pharmaceutical randomized controlled trials with weight loss or weight gain prevention as major endpoints were included. Two authors independently reviewed each publication for inclusion. 121 articles met the inclusion criteria. Two authors independently extracted treatment, sample size, drop-out rates, study duration, and statistical method used to handle missing data from all articles and resolved disagreements by consensus. In the meta-analysis, drop-out rates were substantial with the survival (non-dropout) rates being approximated by an exponential decay curve (e(−λt)) where λ was estimated to be .0088 (95% bootstrap confidence interval: .0076 to .0100) and t represents time in weeks. The estimated drop-out rate at 1 year was 37%. Most studies used last observation carried forward as the primary analytic method to handle missing data. We also obtained 12 raw obesity randomized controlled trial datasets for empirical analyses. Analyses of raw randomized controlled trial data suggested that both mixed models and multiple imputation performed well, but that multiple imputation may be more robust when missing data are extensive. CONCLUSION/SIGNIFICANCE: Our analysis offers an equation for predictions of dropout rates useful for future study planning. Our raw data analyses suggests that multiple imputation is better than other methods for handling missing data in obesity randomized controlled trials, followed closely by mixed models. We suggest these methods supplant last observation carried forward as the primary method of analysis.
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spelling pubmed-27205392009-08-13 Missing Data in Randomized Clinical Trials for Weight Loss: Scope of the Problem, State of the Field, and Performance of Statistical Methods Elobeid, Mai A. Padilla, Miguel A. McVie, Theresa Thomas, Olivia Brock, David W. Musser, Bret Lu, Kaifeng Coffey, Christopher S. Desmond, Renee A. St-Onge, Marie-Pierre Gadde, Kishore M. Heymsfield, Steven B. Allison, David B. PLoS One Research Article BACKGROUND: Dropouts and missing data are nearly-ubiquitous in obesity randomized controlled trails, threatening validity and generalizability of conclusions. Herein, we meta-analytically evaluate the extent of missing data, the frequency with which various analytic methods are employed to accommodate dropouts, and the performance of multiple statistical methods. METHODOLOGY/PRINCIPAL FINDINGS: We searched PubMed and Cochrane databases (2000–2006) for articles published in English and manually searched bibliographic references. Articles of pharmaceutical randomized controlled trials with weight loss or weight gain prevention as major endpoints were included. Two authors independently reviewed each publication for inclusion. 121 articles met the inclusion criteria. Two authors independently extracted treatment, sample size, drop-out rates, study duration, and statistical method used to handle missing data from all articles and resolved disagreements by consensus. In the meta-analysis, drop-out rates were substantial with the survival (non-dropout) rates being approximated by an exponential decay curve (e(−λt)) where λ was estimated to be .0088 (95% bootstrap confidence interval: .0076 to .0100) and t represents time in weeks. The estimated drop-out rate at 1 year was 37%. Most studies used last observation carried forward as the primary analytic method to handle missing data. We also obtained 12 raw obesity randomized controlled trial datasets for empirical analyses. Analyses of raw randomized controlled trial data suggested that both mixed models and multiple imputation performed well, but that multiple imputation may be more robust when missing data are extensive. CONCLUSION/SIGNIFICANCE: Our analysis offers an equation for predictions of dropout rates useful for future study planning. Our raw data analyses suggests that multiple imputation is better than other methods for handling missing data in obesity randomized controlled trials, followed closely by mixed models. We suggest these methods supplant last observation carried forward as the primary method of analysis. Public Library of Science 2009-08-13 /pmc/articles/PMC2720539/ /pubmed/19675667 http://dx.doi.org/10.1371/journal.pone.0006624 Text en Elobeid et al. http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are properly credited.
spellingShingle Research Article
Elobeid, Mai A.
Padilla, Miguel A.
McVie, Theresa
Thomas, Olivia
Brock, David W.
Musser, Bret
Lu, Kaifeng
Coffey, Christopher S.
Desmond, Renee A.
St-Onge, Marie-Pierre
Gadde, Kishore M.
Heymsfield, Steven B.
Allison, David B.
Missing Data in Randomized Clinical Trials for Weight Loss: Scope of the Problem, State of the Field, and Performance of Statistical Methods
title Missing Data in Randomized Clinical Trials for Weight Loss: Scope of the Problem, State of the Field, and Performance of Statistical Methods
title_full Missing Data in Randomized Clinical Trials for Weight Loss: Scope of the Problem, State of the Field, and Performance of Statistical Methods
title_fullStr Missing Data in Randomized Clinical Trials for Weight Loss: Scope of the Problem, State of the Field, and Performance of Statistical Methods
title_full_unstemmed Missing Data in Randomized Clinical Trials for Weight Loss: Scope of the Problem, State of the Field, and Performance of Statistical Methods
title_short Missing Data in Randomized Clinical Trials for Weight Loss: Scope of the Problem, State of the Field, and Performance of Statistical Methods
title_sort missing data in randomized clinical trials for weight loss: scope of the problem, state of the field, and performance of statistical methods
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC2720539/
https://www.ncbi.nlm.nih.gov/pubmed/19675667
http://dx.doi.org/10.1371/journal.pone.0006624
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